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Cost efficient scheduling of MapReduce applications on public clouds

机译:在公共云上经济高效地调度MapReduce应用程序

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MapReduce framework has been one of the most prominent ways for efficient processing large amount of data requiring huge computational capacity. On-demand computing resources of Public Clouds have become a natural host for these MapReduce applications. However, the decision of what type and in what amount computing and storage resources should be rented is still a user's responsibility. This is not a trivial task particularly when users may have performance constraints such as deadline and have several Cloud product types to choose with the intention of not spending much money. Even though there are several existing scheduling systems, however, most of them are not developed to manage the scheduling of MapReduce applications. That is, they do not consider things such as number of map and reduce tasks that are needed to be scheduled and heterogeneity of Virtual Machines (VMs) available. This paper proposes a novel greedy o minimize cost of renting Cloud resources while considering Service Level Agreements (SLA) in terms of the user given budget and deadline constraints. The simulation results show that MASA can achieve 25-50% cost reduction in comparison to current SLA agnostic methods and there is only 10% performance disparity between MASA and an exhaustive search algorithm. (C) 2017 Elsevier B.V. All rights reserved.
机译:MapReduce框架一直是有效处理需要大量计算能力的大量数据的最主要方法之一。公共云的按需计算资源已成为这些MapReduce应用程序的自然宿主。但是,用户应自行决定应租用哪种类型以及租用多少数量的计算和存储资源。这不是一项微不足道的任务,特别是当用户可能有性能限制(例如截止日期)并且为了不花太多钱而选择几种云产品类型时。即使有几种现有的调度系统,但是,大多数调度系统都不是为管理MapReduce应用程序的调度而开发的。也就是说,他们不考虑诸如映射数和减少需要计划的任务以及可用的虚拟机(VM)异构性之类的事情。本文提出了一种新颖的贪婪策略,可以最大限度地降低租用云资源的成本,同时根据用户给定的预算和截止日期限制来考虑服务水平协议(SLA)。仿真结果表明,与当前的SLA不可知论方法相比,MASA可以降低25-50%的成本,并且MASA与穷举搜索算法之间的性能差异仅10%。 (C)2017 Elsevier B.V.保留所有权利。

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